A lagged dependent variable in an OLS regression is often used as a means of capturing dynamic effects in political processes and as a method for ridding the model of autocorrelation. But recent work contends that the lagged dependent variable specification is too problematic for use in most situations. More specifically, if residual autocorrelation is present, the lagged dependent variable causes the coefficients for explanatory variables to be biased downward. We use a Monte Carlo analysis to assess empirically how much bias is present when a lagged dependent variable is used under a wide variety of circumstances. In our analysis, we compare the performance of the lagged dependent variable model to several other time series models. We sho...
Difference-in-differences is a widely used evaluation strategy that draws causal inference from obse...
Numerous experimental studies use a panel approach to analyze repeated experiments involving a large...
This paper considers a distributed lag model in which the dependent variable is observed qualitative...
A lagged dependent variable in an OLS regression is often used as a means of capturing dynamic effec...
A lagged dependent variable in an OLS regression is often used as a means of capturing dynamic effec...
We give an expression to order O( T-1 ), where T is the sample size, for bias to the estimated coeff...
A stochastic-simulation method is proposed in this paper for obtaining median unbiased estimates of ...
As a method to ascertain the structure of intra-individual variation, P-technique has met difficulti...
This paper deals with a variety of dynamic issues in the analysis of time- series–cross-section (TSC...
This paper deals with a variety of dynamic issues in the analysis of time-series– cross-section (TSC...
This paper deals with a variety of dynamic issues in the analysis of time-series–cross-section (TSCS...
This article compares a general cross-lagged model (GCLM) to other panel data methods based on their...
A common procedure in economics is to estimate long-run effects from models with lagged dependent va...
This article deals with a variety of dynamic issues in the analysis of time-series-cross-section (TS...
Across the social sciences, lagged explanatory variables are a common strategy to confront challenge...
Difference-in-differences is a widely used evaluation strategy that draws causal inference from obse...
Numerous experimental studies use a panel approach to analyze repeated experiments involving a large...
This paper considers a distributed lag model in which the dependent variable is observed qualitative...
A lagged dependent variable in an OLS regression is often used as a means of capturing dynamic effec...
A lagged dependent variable in an OLS regression is often used as a means of capturing dynamic effec...
We give an expression to order O( T-1 ), where T is the sample size, for bias to the estimated coeff...
A stochastic-simulation method is proposed in this paper for obtaining median unbiased estimates of ...
As a method to ascertain the structure of intra-individual variation, P-technique has met difficulti...
This paper deals with a variety of dynamic issues in the analysis of time- series–cross-section (TSC...
This paper deals with a variety of dynamic issues in the analysis of time-series– cross-section (TSC...
This paper deals with a variety of dynamic issues in the analysis of time-series–cross-section (TSCS...
This article compares a general cross-lagged model (GCLM) to other panel data methods based on their...
A common procedure in economics is to estimate long-run effects from models with lagged dependent va...
This article deals with a variety of dynamic issues in the analysis of time-series-cross-section (TS...
Across the social sciences, lagged explanatory variables are a common strategy to confront challenge...
Difference-in-differences is a widely used evaluation strategy that draws causal inference from obse...
Numerous experimental studies use a panel approach to analyze repeated experiments involving a large...
This paper considers a distributed lag model in which the dependent variable is observed qualitative...